Optimal Mixing via Tensorization for Random Independent Sets on Arbitrary Trees
Charilaos Efthymiou, Thomas P. Hayes, Daniel Stefankovic, Eric Vigoda

TL;DR
This paper proves an optimal linear bound on the mixing time of Glauber dynamics for sampling independent sets on any tree, independent of maximum degree, extending previous results beyond regular and bounded-degree graphs.
Contribution
It establishes the first optimal mixing time bound for arbitrary trees without degree dependence, using spectral independence and tensorization techniques.
Findings
Optimal $O(n)$ relaxation time for arbitrary trees
Spectral independence with degree-independent constant
Extension beyond the uniqueness threshold for $oldsymbol{ ext{Glauber dynamics}}$
Abstract
We study the mixing time of the single-site update Markov chain, known as the Glauber dynamics, for generating a random independent set of a tree. Our focus is obtaining optimal convergence results for arbitrary trees. We consider the more general problem of sampling from the Gibbs distribution in the hard-core model where independent sets are weighted by a parameter ; the special case corresponds to the uniform distribution over all independent sets. Previous work of Martinelli, Sinclair and Weitz (2004) obtained optimal mixing time bounds for the complete -regular tree for all . However, Restrepo et al. (2014) showed that for sufficiently large there are bounded-degree trees where optimal mixing does not hold. Recent work of Eppstein and Frishberg (2022) proved a polynomial mixing time bound for the Glauber dynamics for arbitrary…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Data Management and Algorithms · Algorithms and Data Compression
